Classifying Malware Traffic Using Images and Deep Convolutional Neural Network
R. E. Davis,
Jingsheng Xu,
Kaushik Roy
Abstract:Network traffic classification plays a crucial role in detecting malware threats. However, most existing research focuses on extracting statistical features from the network traffic, ignoring the rich information contained within raw packet capture (pcap) files. To achieve higher accuracy in malware traffic classification, we propose a novel approach that fully utilizes the information contained in the pcap files by representing them with images and then train deep Convolutional Neural Networks (CNN) to learn … Show more
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